Estimation of the Infection Window for the 2010/2011 Korean Foot-and-Mouth Disease Outbreak

Article information

Osong Public Health Res Perspect. 2013;4(3):127-132
Publication date (electronic) : 2013 May 15
doi : https://doi.org/10.1016/j.phrp.2013.04.010
aVeterinary Epidemiology Division, Animal and Plant Quarantine Agency, Anyang, Korea
bFoot-and-Mouth Disease Division, Animal and Plant Quarantine Agency, Anyang, Korea
cLivestock Products Standard Division, Animal and Plant Quarantine Agency, Anyang, Korea
Corresponding author. heleney@korea.kr
Received 2013 February 12; Revised 2013 March 25; Accepted 2013 April 16.

Abstract

Objectives

This study aims to develop a method for calculating infection time lines for disease outbreaks on farms was developed using the 2010/2011 foot-and-mouth disease (FMD) epidemic in the Republic of Korea.

Methods

Data on farm demography, the detection date of FMD, the clinical history for the manifestation of lesions, the presence of antibodies against FMD virus (including antibodies against the structural and nonstructural proteins of serotype O), vaccination status (O1 Manisa strain), the number of reactors and information on the slaughter of infected animals were utilized in this method.

Results

Based on estimates of the most likely infection date, a cumulative detection probability that an infected farm would be identified on a specific day was determined. Peak infection was observed between late December and early January, but peak detection occurred in mid-January. The early detection probability was highest for pigs, followed by cattle (dairy, then beef) and small ruminants. Nearly 90% of the infected pig farms were detected by Day 11 post-infection while 13 days were required for detection for both dairy and beef cattle farms, and 21 days were necessary for small ruminant (goat and deer) farms. On average, 8.1 ± 3.1 days passed prior to detecting the presence of FMD virus on a farm. The interval between infection and detection of FMD was inversely associated with the intensity of farming.

Conclusion

The results of our study emphasize the importance of intensive clinical inspection, which is the quickest method of detecting FMD infection and minimizing the damage caused by an epidemic.

1 Introduction

Foot-and-mouth disease (FMD) is one of the most contagious viral diseases of cloven-hoofed animals and occurs sporadically and endemically in many parts of the world except for Europe, North America, and Oceania [1]. An outbreak of FMD results in economic losses because of the control measures used (e.g., movement restrictions, vaccination, and slaughter) and decreased productivity, both of which affect the entire livestock industry. When an infected or suspected farm is detected, a thorough investigation should be made of all animals, vehicles, personnel, and materials moved on and off the farm for the duration of the risk period associated with the introduction and transmission of the virus [2]. Epidemiological data should be used to construct contact networks between farms according to contact tracing and the estimated infection time line. Infection time lines include estimates of the temporal windows during which a farm was most likely to have been infected and the infectious period surrounding the infected farms. During the 2010/2011 FMD epidemic in the Republic of Korea, emergency vaccination was implemented 1 month after detection of the index case; this policy ultimately became a vaccine-to-live policy. Vaccinations were initiated on cattle farms within the outbreak areas, but were later extended to include all cloven-hoofed animals in Korea. As a result, vaccination status differed with the time of infection, time of detection, animal species, and farm type. Considering the diverse vaccination conditions of the infected farms, all available information, including serological test results, clinical manifestation, and disease dynamics, should be integrated to estimate the infection time line. Moreover, a standard protocol should be developed to apply consistent criteria to each infected farm. In this paper, we present a method for calculating the infection time line at the farm level using the 2010/2011 FMD epidemic in Korea as a reference.

2 Materials and Methods

2.1 Data on the infected farms

This study included 3748 farms on which at least one serological reactor was confirmed during the FMD epidemic of November 2010 to April 2011. The data used in this study were extracted from the FMD database of the Animal Plant and Fisheries Quarantine and Inspection Agency and included the following: farm demography, the detection date of FMD, the clinical history for the manifestation of lesions, the presence of antibodies against the structural protein (SP) or nonstructural protein (NSP) of FMD serotype O, vaccination status (O1 Manisa strain), the number of reactors, and records on the slaughter of infected animals. Farms were classified by type according to the major species of animal farmed. The study population consisted of 1425 beef cattle, 509 dairy cattle, 1727 pig, 44 goat, and 43 deer farms. The FMD database has been described elsewhere [3].

2.2 The most likely time of infection

The criteria used to estimate the most likely time of infection were prioritized according to the chronological dynamics of FMD virus infection in animals: viremia, clinical lesions, and antibody response [4,5]. The method used to estimate the infection time differed according to vaccination status. However, the presence of NSP antibodies was given the highest priority regardless of vaccination status. If NSP antibodies were detected in at least one animal on a farm, the first animal in this herd was estimated to have been infected at least 11 days (pigs), 13 days (cattle), or 15 days (small ruminants) prior to detection. The second priority for the non-vaccinated farms was the presence of SP antibodies. If SP antibodies were detected, the first infection had to have occurred at least 6 days (pigs), 8 days (cattle), or 10 days (small ruminants) prior to detection. These intervals were inferred from the literature [6–8]. If neither NSP nor SP antibodies were detected, then the infection time was calculated as the age of the oldest clinical lesion plus the incubation period (5 days for cattle, 4 days for pigs, and 6 days for small ruminants [9]) subtracted from the date of detection, which was the same date that the examination for clinical lesions was performed. The age of the clinical lesions was determined using the “Foot and Mouth Disease Aging of Lesions” criteria [10]. On subclinically infected farms, the incubation period was estimated backwards from the time of detection. When several reactors were present on a farm, species-specific simulated patterns of within-herd transmission were also considered [1,11,12]. For vaccinated farms, the second priority was the manifestation of clinical signs. For subclinically infected farms, the incubation period was subtracted from the date of detection. On the vaccinated farms, the presence of SP antibodies was considered only if the reactors showed clinical lesions within 3 days of vaccination. When clinical signs of FMD were observed 4–7 days postvaccination, the infection dates were independently estimated based on the presence of SP antibody and clinical signs. Then, the two estimated dates (with and without the presence of SP antibodies) were compared, and the earliest date of the two estimates was considered the infection date. For farms that were detected more than 14 days postvaccination, the presence of SP antibodies was ignored when determining the infection time.

2.3 Statistical analysis of the time distribution

All analyses in the present study were performed at the farm level and separately according to farm type. Taking into account the small number of infected farms for goats (n = 44) and deer (n = 43), these two farm types were combined and the new class “small ruminants” was generated.

The cumulative probability that a farm would be detected on a specific day t was estimated as a detection density function, f(Tmt):

f(Tmt)=S(Tt)qtbt
where S(Tt) was the cumulative proportion not-detecting, qt was the conditional proportion detecting, and bt was the width of the interval, which was 1 day in this study. The cumulative detection density function was calculated by summing the detection density function from time t = 0 to t = 1. The detection density function and statistical analyses were performed using NCSS 2007 (NCSS, Kaysville, Utah, USA).

The distribution of data for the time interval between the most likely time of infection and detection was fit to the probability density function using maximum likelihood estimates. Goodness of fit was evaluated using the Anderson–Darling test because the time interval was a continuous scale. The estimation of the distribution was performed using @RISK 5.0 (Palisade Inc., Newfield, NY, USA).

3 Results

The daily number of farms infected and detected showed a similar distribution pattern. A 5–10-day gap was observed between infection and detection of the infected farms. However, the shape of the detected distribution was less smooth than the infected distribution for the period from late January 2011 to February 2011. The infection peak was observed between late December and early January, while detection peaked in mid-January (Figure 1).

Figure 1

Epidemic curves showing the number of foot-and-mouth disease (FMD) infected farms (red) and the number of detected farms (blue) by day.

The cumulative probability of detection increased with elapsed time and showed an inverse-exponential curve for pigs and a sigmoidal shape for small ruminants. The probability of early detection was the highest for pig farms, followed by dairy and beef cattle farms, and small ruminant farms. Almost 90% of the infected farms were detected by Day 11 postinfection for pig farms, by Day 13 for both dairy and beef cattle farms, and by Day 21 for small ruminant farms (Figure 2).

Figure 2

Cumulative detection density function describing whether a farm would be detected on a specific day following the occurrence of the first foot-and-mouth disease (FMD) infected animal.

A mean ± standard deviation of 8.1 ± 3.1 days passed prior to the detection of FMD infection on a farm, which we defined as a “detection delay”. The detection delays were shortest for pig farms (7.1 ± 2.5 days) and longest for deer farms where a large variation was also observed (14.4 ± 8.1 days). These time intervals did not present any kind of temporal variation or trend. The coefficient of correlation (r) between the detection delay and the number of days elapsed since the start of the epidemic was −0.02 (p = 0.99). However, the detection delays were significantly different relative to farm type (F-ratio in the analysis of variance, ANOVA = 202.10, p < 0.001). The best fit distributions were Weibull for beef cattle, Pearson type 5 for dairy cattle, Beta General for pigs, and Normal for small ruminants (Table 1).

Descriptions of the estimated interval (days) from infection to detection for infected farms according to farm type

4 Discussion

Clinical signs are the most convenient indicators of an outbreak and can be related to the progression of disease. In the case of FMD, the most likely time of infection can be estimated on the basis of the oldest clinical lesion in the herd. Such estimations have been used to construct transmission pathways [13,14], understand the pattern of virus excretion [15,16], assess the efficacy of control measures [17], simulate modeling programs [18], and identify the risk factors associated with disease transmission [19]. However, the use of clinical signs is not always feasible because the manifestation of clinical signs is not always obvious; symptoms are less clear in sheep, goats, and deer, for example, than in pigs and cattle [3]. In addition, vaccination against FMD may prevent animals from developing clinical lesions even when infected [20]. It is also possible that the earliest infected animals in a herd are missed until a greater number of animals show clinical signs [15]. If an infected farm can be detected prior to the development of clinical signs (i.e., during the incubation period) through active serological surveillance in association with contact with an infected farm, then relying on clinical lesions is no longer necessary [3,21]. In our method, the detection of NSP antibodies was, for various reasons, the top priority when estimating the infection date. It was possible to distinguish vaccinated from nonvaccinated animals with an NSP enzyme-linked immuno sorbent assay (ELISA) using 3ABC [22] or 3AB [23]. Moreover, SP antibodies develop quicker than NSP antibodies [8]. The seroconversion times reported in the literature are 5 days postinfection for SP antibodies in calves and 10 days postinfection for NSP antibodies in pigs, cattle, and calves [6–8]. Thus, using antibody detection as a criterion was plausible because all 3748 infected farms were confirmed by laboratory diagnosis. However, not all animals suspected of being infected were tested for the presence of antibodies. Our protocol remains reliable, however, because animals showing the most severe clinical lesions were purposefully chosen for specimen collection to detect the reactor [24].

The time interval between initial infection and detection ranged from 6 days to 15 days in modeling studies [3,25]. However, these estimations include uncertainties because of the assumptions used in their calculation. In the present study, the time courses used to estimate infection time (e.g., latency, incubation, and seroconversion for SP and NSP antibodies) were shorter for pigs than for cattle or small ruminants, which might influence the detection delays in our estimation. This influence appears negligible, however, based on our previous work in which the interval between infection and the detection of clinical signs was shortest in pigs, and the manifestation of clinical signs was independent of vaccination status [3]. Although the parameters of infection and detection could change during the epidemic [24], such change was not considered because the time elapsed from the start of the epidemic did not affect the detection delay, and no correlation was observed between detection delay and the start of the epidemic in the present study (r = −0.02, p = 0.99).

Detection delays appeared to be associated with within-herd transmission, the type of animal and herd, and the size and density of the herd. Transmission of FMD within an animal herd is influenced by the viability and virulence of the virus strain, and FMD is not easily controlled. Temperature and pH are well-known determinants of FMD virus survival, and the virus is capable of remaining viable under cool conditions [26]. In hot climates, direct transmission through the movement of animals is believed to be the most important factor [27], but in cold weather, such as during winter in Korea when the average temperature in January can drop as low as −7°C [28], the disinfection of inorganic substances (e.g., vehicles, materials, etc.) can be difficult. Indirect mechanical transmission of the virus, which can persist in the environment, would be the main concern for biosecurity and disease control. Another factor to consider is human (farmer) behavior [29]. In an intensive production system, the indirect contact between animals is mainly the result of human activities. Thus, in Korea, the disease might have spread faster among animals in intensive farming systems such as pigs and dairy cattle. Moreover, detection may have occurred earlier than in an extensive production system. The probability of detecting FMD therefore seems to be largely dependent on the frequency and intensity of observations made by the farmers, and thus a result of human action. An example of how the risk of infection could be controlled through clinical observation was observed during the FMD outbreak in the UK. As the movement of animals is considered the highest risk factor for disease transmission, during the 2007 FMD outbreaks in England all animals intended for shipment to Scotland were clinically inspected. These inspections reduced the estimated probability of missing infected ovine farms by half within 15 days [30].

In conclusion, this study describes an essential but often overlooked step in field epidemiology. Our protocol for estimating the infection time of FMD virus on a farm was designed to measure the time required to detect the infection, which directly influences the efficacy of control measures. The interval between infection and detection of FMD was inversely associated with the intensity of farming. Our findings emphasize the importance of intensive clinical inspections as the quickest method for detecting FMD infections and minimizing the damage caused by an epidemic. The method of estimating the infection window proposed in this study can be used to improve the accuracy of emergency responses in case of an FMD outbreak.

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Acknowledgments

This study was funded by the Research and Development program of the Animal and Plant Quarantine Agency [Project No. I-AD17-2011-12-01].

Notes

This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/3.0) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.

Article information Continued

Figure 1

Epidemic curves showing the number of foot-and-mouth disease (FMD) infected farms (red) and the number of detected farms (blue) by day.

Figure 2

Cumulative detection density function describing whether a farm would be detected on a specific day following the occurrence of the first foot-and-mouth disease (FMD) infected animal.

Table 1

Descriptions of the estimated interval (days) from infection to detection for infected farms according to farm type

Farm type Mean (SD)Median (Q1, Q3) Distribution(parameters) Anderson–Darling statistic
Beef cattle 9.1 (3.0) Weibull 27.89
8 (6, 12) (α = 3.34, β = 10.12)
Dairy cattle 8.3 (3.1) Pearson 5 16.92
8 (6, 11) (α = 8.61, β = 63.5)
Pigs 7.1 (2.5) Beta General 21.12
7 (5, 9) (α1 = 1.66, α2 = 4.16, min = 2.90, max = 17.52)
Small ruminants 12.6 (4.9) Normal 3.30
15 (8, 16) (Mean = 12.59, SD = 4.94)

SD = standard deviation.